Study on optimal operation of reservoir based on directional self-learning genetic algorithm

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作者
School of Water Resources and Hydraulic Power, Xi'an University of Technology, Xi'an 710048, China [1 ]
不详 [2 ]
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Shuili Fadian Xuebao | 2009年 / 4卷 / 43-48+55期
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Fluid mechanics - Shore protection - Learning algorithms;
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摘要
A directional self-learning genetic algorithm is proposed in this paper, and it is applied to the optimal operation of reservoir. A directional self-learning system is introduced to improve the traditional generic algorithm that is typically slow in convergence and subject to premature convergence. In the new algorithm, directional information or pseudo-gradient of the function is introduced to guide the local searching. In addition a withering operator is proposed to increase population diversity, thus premature convergence and dimensional disaster risk are eliminated, and greater convergence speed is achieved. A case study indicates that, in contrast with the traditional generic algorithm, the directional self-learning generic algorithm shows advantages in computing cost and convergence for the optimization of reservoir operation.
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